Generalized rake receiver for wireless communication

ABSTRACT

The present invention is related to a generalized rake receiver for a wireless communication system. The rake receiver comprises a plurality of finger correlators and a plurality of escort correlators. Each finger correlator demodulates each multipath components of the transmitted signal. The escort correlator is used for multipath tracking for optimal finger placement and weight estimation for demodulation. The escort correlator is located in vicinity of multipath center and is programmable within a chip and at a resolution finer than a chip. Weight vector is estimated using the estimate of the total base station energy based upon the pilot information from the base stations in soft-handoff.

CROSS REFERENCE TO RELATED APPLICATION

This application claims the benefit of U.S. Provisional Application No. 60/656,062 filed Feb. 24, 2005, which is incorporated by reference as if fully set forth.

FIELD OF INVENTION

The present invention is related to wireless communication systems. More particularly, the present invention is related to a generalized rake receiver for wireless communication. The rake receiver may be utilized in all types of communication systems including, but not limited to, frequency division duplex (FDD), time division duplex (TDD), and time division-synchronous code division multiple access (TD-SCDMA) systems.

BACKGROUND

Rake receivers are widely used for demodulating signals transmitted in code division multiple access (CDMA) communication systems. The rake receiver is effective for demodulating signals which are subject to interference caused by multipath interference.

A rake receiver is utilized to despread transmissions received from a transmitter through utilization of a cross correlator and a code generator, as is conventional. The rake receiver receives both direct, (i.e. line of sight), RF waves as well as delayed, (i.e. multipath), RF waves due to different transmission path lengths, reflections, etc. Since the direct RF wave is not necessarily the strongest signal or is often not strong enough for reception, synthesizing, (i.e. combining), the energy of the direct RF waves with the energy of delayed waves results in better signal reception.

Each finger of a rake receiver is provided with a plurality of cross-correlators and co-generators for performing despreading. Time offset is adjusted using a delay circuit whereupon all the signals are added together after imposing the appropriate delays to these signals.

SUMMARY

The present invention is related to a generalized rake receiver for a wireless communication system. The rake receiver comprises a plurality of finger correlators and a plurality of escort correlators. Each finger correlator demodulates each multipath components of the transmitted signal. The escort correlator is used for multipath tracking for optimal finger placement and weight estimation for demodulation. The escort correlator is located in the vicinity of the multipath center and is programmable within a chip and at a resolution finer than a chip. A weight vector is estimated using the estimate of the total base station energy based upon the pilot information from the base stations in soft-handoff.

BRIEF DESCRIPTION OF THE DRAWING

FIG. 1 is a block diagram of a generalized rake receiver in accordance with the present invention.

FIG. 2 is a flow diagram of a process for implementing a generalized rake receiver in accordance with the present invention.

DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

Hereafter, the terminology “wireless transmit/receive unit” (WTRU) includes but is not limited to a user equipment, a mobile station, a fixed or mobile subscriber unit, a pager, or any other type of device capable of operating in a wireless environment. When referred to hereafter, the terminology “base station” includes but is not limited to a Node-B, site controller, access point or any other type of interfacing device in a wireless environment.

As implied by its name, the generalized rake receiver (G-rake) has a similar functional structure as a traditional rake receiver. However, there are three main features that differentiate the G-rake of the present invention from the traditional rake receiver. First, the location of fingers, (i.e., correlators) is different. In a typical rake receiver, fingers are placed on top of strong multipath components. In the G-rake of the present invention, fingers are not only positioned “on top” of the strong resolvable multipath components but some correlators are also placed in the vicinity of strong multipath components.

Second, the number of fingers is different. In a typical rake receiver, there may be as many as twice as many fingers as there are (strong) multipaths. In the G-rake of the present invention, the number of fingers does not have a direct relationship with the number of resolvable multipath components.

Third, the combining weight computation method is different. The finger combining weights for the traditional rake typically uses a maximum ratio combining (MRC) criterion to exploit the multipath diversity. The G-rake weights of the present invention are determined by a method derived from a formulation such as maximum likelihood (ML) estimation that models the intra-cell multi-access interference (MAI) and inter-cell interference as colored Gaussian noise and exploits the time-domain noise correlation for attaining improved performance.

FIG. 1 is a block diagram of the G-rake 100 in accordance with the present invention. The G-rake 100 comprises a plurality of correlators 102 ₁-102 _(n), a path searcher 104, a weight vector generation unit 106, a plurality of multipliers 108 ₁-108 _(n), a combiner 110 and a decoder 112.

The received signals, r(t), comprises several multipath components whose outputs are combined by the combiner 110. The path searcher 104 tracks some of the strongest multipath components and outputs the locations to each of the correlators 102 ₁-102 _(n). Each location has a different delay, τ₁-τ_(n), corresponding to a strong and resolvable multipath component. The received signal, r(t), enters into the correlators 102 ₁-102 _(n) and is delayed by each of the delay units 114 ₁-114 _(n), which are configured by the path searcher 104.

The delayed versions of the received signal are multiplied by the scrambling code at each multiplier 116 ₁-116 _(n) of each corresponding correlator 102 _(i)-102 _(n). The descrambled data of each path is despread by multiplying the descrambled data by the spreading code. The despread data is then integrated over one symbol period by an integrate and dump unit 118 ₁-118 _(n), giving one complex sample output, y₁-y_(n), per symbol.

Each correlator output, y₁-y_(n), is multiplied by a corresponding weight values, w₁-w_(n), which are determined by the weight vector generation unit 106, and the weighted values are combined by the combiner 110. The combined value, z, is output to the decoder 112 for soft symbol estimation.

In order to equalize the data signals after despreading and descrambling, channel estimation is required. There are many different ways of channel estimation based upon correlation of the pilot signal. It should be noted to those of skill in the art that any other method may be implemented instead of the one illustrated herein.

For example, in the downlink of the W-CDMA system, a common pilot channel (CPICH) is transmitted with a higher power than dedicated traffic channels. The CPICH is received by all the WTRUs in a given cell. The CPICH is transmitted with a constant spreading factor (SF) of 256 and a spreading code of all ones (1s). This means that there are 10 symbols per slot and 150 symbols per frame of CPICH in the W-CDMA system. All the symbols of the CPICH are 1+j.

A common method of channel estimation is based upon a multi-dwell algorithm. The received signal is correlated in segments of 256 chips, (i.e. one CPICH symbol), with the descrambling sequence, (i.e. the CPICH signal), with delays corresponding to each multipath component, as shown in FIG. 1. Then, for each multipath delay the result of this correlation operation is averaged over a moving window of a few pilot symbols, (each of 256 chips), to produce an estimate of the corresponding multipath complex amplitude. This follows from the fact that all CPICH symbols have value of 1. The conjugate of the estimated channel path amplitudes are then used to equalize the data signals after despreading and descrambling.

A typical size of the averaging window is on the order of 10 CPICH symbols. The window shape can be perfectly rectangular, corresponding to low-pass sin(x)/x-shaped filter frequency response. Further optimization of the filter in terms of the window size, (i.e., the number of memory elements in the tap-delay line), and frequency response is possible.

Computation of weight vector is explained hereinafter. The decision variable z results from multiplying the vector of combining weight vector w by the vector of correlator output y as follows: z=w ^(H) y;  Equation (1) where H indicates the Hermitian transposition. The dimension of w and y is J×1, where J is the number of correlator branches. This operation is the same as with the traditional rake receiver. However, the position and the number of correlators are both input parameters to the G-rake of the present invention.

The vector y, (i.e., the correlator outputs), can be expressed as the superposition of the desired signal y_(d), a self-interference component y_(ISI) due to the channel and root raised cosine (RRC) filter dispersion, a multiuser interference component y_(MUI) due to interference from other orthogonal multi-user channels, and a noise component n due to other-cell interference and additive white Gaussian noise (AWGN), as shown in Equation (2): y=√{square root over (E ₀)}y _(d) ·s ₀+√{square root over (E ₀)}y _(ISI)+√{square root over (E ₁)}y _(MUI)+√{square root over (N ₀)}n.  Equation (2)

In Equation (2), s₀ is the desired data symbol and all vectors are J×1 in size. The scalars E₀, E_(I) and N₀ are relative energy terms. E₀ is the energy per symbol period (not chip period) of user 0 (the desired user), E_(I) is the total energy per symbol period of the remaining users in the cell, (i.e. users 1 to K−1, where K is the total number of users served by the base station's downlink), and N₀ is the other-cell interference and AWGN energy per symbol period.

In accordance with the present invention, the G-rake combining weight vector w is calculated using the interference model of Equation (2) along with the maximum likelihood (ML) criterion on y_(d). The matrix-vector multiplication of Equation (3) provides the G-rake combining weights: w=R _(u) ⁻¹ h;  Equation (3) where R_(u) and h are given by: R _(u) =E ₀ R _(ISI) +E _(I) R _(MUI) +N ₀ R _(n); and,  Equation (4) h=√{square root over (E ₀)}y _(d).  Equation (5) In Equation (4), the three matrices R_(ISI), R_(MUI) and R_(n) are of dimension J×J, and they are the fundamental components of the G-rake weights. They represent, respectively, the autocorrelation of y_(ISI), y_(MUI) and n and their elements are obtained as follows: $\begin{matrix} {{{R_{ISI}\left( {j,k} \right)} = {\sum\limits_{i = {- \infty}}^{\infty}{\sum\limits_{m = {1 - {SF}_{USER}}}^{{SF}_{USER} - 1}{\left\lbrack {1 - {\delta(i)}} \right\rbrack{\left( {{SF}_{USER} - {m}} \right) \cdot \left\{ {\sum\limits_{l = 0}^{L - 1}{\left\lbrack {g_{l} \cdot {R_{p}\left( {d_{j} + {mT}_{c} - {iT} - \tau_{l}} \right)}} \right\rbrack \cdot {\sum\limits_{q = 0}^{L - 1}\left\lbrack {g_{q} \cdot {R_{p}\left( {d_{k} + {mT}_{c} - {iT} - \tau_{q}} \right)}} \right\rbrack^{*}}}} \right\}}}}}},} & {{Equation}\quad(6)} \\ {{R_{MUI}\left( {j,k} \right)} = {\sum\limits_{i = {- \infty}}^{\infty}{\sum\limits_{m = {1 - {SF}_{USER}}}^{{SF}_{USER} - 1}{\left\lbrack {1 - {\delta(m)}} \right\rbrack{\delta(i)}\text{]}{\left( {{SF}_{USER} - {m}} \right) \cdot \left\{ {\sum\limits_{l = 0}^{L - 1}{\left\lbrack {g_{l} \cdot {R_{p}\left( {d_{j} + {mT}_{c} - {iT} - \tau_{l}} \right)}} \right\rbrack \cdot {\sum\limits_{q = 0}^{L - 1}\left\lbrack {g_{q} \cdot {R_{p}\left( {d_{k} + {mT}_{c} - {iT} - \tau_{q}} \right)}} \right\rbrack^{*}}}} \right\}}}}}} & {{Equation}\quad(7)} \\ {{R_{n}\left( {j,k} \right)} = {{R_{p}\left( {d_{j} - d_{k}} \right)}.}} & {{Equation}\quad(8)} \end{matrix}$ where j and k are matrix indices, d_(j) and d_(k) are the delays of the j-th and k-th correlator branches (i.e., position of the j-th and k-th finger), g_(l) is complex amplitude of the l-th multipath of the channel impulse response (CIR). The multipath delays are given by τ_(l) and R_(p)(t) is the autocorrelation function of the RRC chip pulse shape used at the transmitter and receiver.

The elements of R_(ISI), R_(MUI) and R_(n) represent correlation measures of the received signal over time-differences that exist between all pairs of correlator branches of the G-rake. Furthermore, these correlation measures depend on the characteristics of the filters through which the signal has passed on its way from the transmitter to the receiver (i.e., the dispersive channel and the RRC filters).

Finally, the vector y_(d) is given by: $\begin{matrix} {{y_{d}(j)} = {\sum\limits_{l = 0}^{L - 1}{g_{l}{{R_{p}\left( {d_{j} - \tau_{l}} \right)}.}}}} & {{Equation}\quad(9)} \end{matrix}$

The present invention addresses three issues in practical implementation of the G-rake of the present invention in a CDMA2000 or W-CDMA scenario. The first issue is how to choose the position of the correlator branches; the second is how to choose the number of correlator branches; and the third is how to calculate the combining weights w in practice. The third issue has various separable components, namely: i) calculating the matrices R_(ISI), R_(MUI), R_(n) and the vector y_(d); ii) determining the energy terms E₀, E_(I) and N₀; and, iii) solving the matrix inversion problem of Equation (3). Each of the foregoing issues is addressed hereinafter.

1) Choosing the number of correlator branches.

In the G-rake of the present invention, as in a conventional rake, the fingers are normally placed on the strongest arriving multipaths. The placement of the escorts may be in any given position surrounding the multipath components, preferably both or either side of the multipath components. The number of escorts can be one (1) per finger or more. In order to reduce computational complexity, for example in the case of a time multiplexed finger processor, the number of total correlators may be reduced to as few as twice the number of significant multipath components present in the channel impulse response.

2) Correlator placement method.

The problem of optimal finger placement has no close form solution and requires a prohibitively complex search procedure. Given a specific weight vector w, the symbol signal to noise ratio (SNR) at the output of a rake combiner, (i.e. the SNR of the decision statistic z, in Equation (1), can be shown to be: $\begin{matrix} {{SNR} = {\frac{w^{H}{hh}^{H}w}{w^{H}R_{u}w}.}} & {{Equation}\quad(10)} \end{matrix}$

Then, given the number of correlators, a search procedure considers evaluating Equation (10) for all possible combinations of finger positions in a window of potential finger delays within a range that spans the entire CIR with some excess. This implies, of course, recalculating the weight vector w each time, which renders the algorithm absolutely impractical.

The present invention utilizes the following very simple, sub-optimal algorithm, in order to obtain most of the G-rake performance gain. It should be noted that the configuration provided hereinafter is provided as an example, and it is obvious to those skilled in the art that any other variance may be implemented.

For ease of description, the following terminology is used throughout the present invention hereinafter. A “finger” is a correlator whose position corresponds to a specific multipath component of the channel impulse response, (i.e., the finger “sits” right on top of a multipath component). As with conventional rake receivers, the function of the fingers is to capture signal energy and exploit multipath diversity gain.

An “escort” is a correlator with identical architecture and functionality as a finger, but it is placed on a position at which the channel impulse response has no multipath component. For the G-rake receiver of the present invention, escorts are typically placed right next to fingers, before and/or after, and the function of the escorts is to exploit the coloration of noise and interference in order to improve the output SNR of the combiner. Escort fingers are placed at equi-positions and preferably within a chip resolution, typically at ½ chip period before and/or ½ chip period after the fingers. If escorts of one finger overlap other escorts or other fingers, then the spare correlator can be used as an escort for the finger on the next strongest path, or not used at all.

3) Calculation of the combining weights.

A procedure for calculating the combining weights starts from calculation of the matrices R_(ISI), R_(MUI), R_(n) and the vector y_(d). The matrices R_(ISI), R_(MUI), R_(n) and the vector y_(d) are obtained by Equations (6)-(9). The above equations correspond, respectively, to element (j, k) of the matrices R, or element j of the vector y_(d). Elements j and k are integer indices that run between 1 and J, (the number of correlators, i.e., fingers plus escorts). Practical implementation of the above expressions requires first translating them into a suitable discrete-time form and then identifying a format that requires the least amount of (hardware) computations during runtime.

Equations (6)-(9) are translated into a form that accommodates for discrete input signals, (i.e., received signals sampled at sub-chip rate), for corresponding fractionally spaced placement of fingers and escorts, and for discrete channel multipath estimates with sub-chip resolution.

Equations (6)-(9) involve evaluating the continuous-time autocorrelation function of the RRC chip-pulse shaping filter impulse response. For implementing the filter, the corresponding autocorrelation sequence of the fractionally spaced, discrete RRC pulse shape sequence shall be used. This sequence is obtained as follows from the impulse response sequence of the RRC pulse shape: $\begin{matrix} \begin{matrix} {{R_{p}(n)} = {{x_{RRC}\left( {- n} \right)}_{l}^{*}{x_{RRC}(n)}}} \\ {{= {\sum\limits_{m}{{x_{RRC}\left( {n + m} \right)} \cdot {x_{RRC}(m)}}}};} \end{matrix} & {{Equation}\quad(11)} \end{matrix}$ where n is an integer time index that corresponds to the sub-chip sample rate, X_(RRC)(n) is the real-valued, fractionally-spaced impulse response sequence of the RRC pulse shape, and *l denotes linear discrete convolution.

For evaluating Equations 6 and 7, the following interpretation for each parameter of the argument of R_(p)(d_(j)+mT_(c)−iT−τ_(i)) is adequate:

-   -   d_(j): An integer that represents the relative delay in sub-chip         units of the j-th correlator.     -   mT_(c): Use m×USF, where USF indicates the upsampling factor,         (i.e. per-chip sampling resolution), of the sampled signal         stream with respect to chip rate (for example, USF=2).     -   iT: Use i×USF×SF_(USER).     -   τ₁: An integer that represents the relative delay in sub-chip         units of the l-th estimated multipath.         The summation index i of the infinite sum in Equations 6 and 7         only appears in the argument of R_(p)(d_(j)+mT_(c)−iT−τ₁). The         discrete sequence representing R_(p)(n), however, is only         nonzero in a finite range around n=0, which turns the infinite         summation into a realizable sum of a finite number of terms. The         following summation range for i ensures that no non-zero values         of R_(p)(n) are left out for any occurrence of the argument         d_(j)+mT_(c)−iT−τ₁ (evaluated with the discrete interpretation         established above): $\begin{matrix}         {{{{abs}(i)} \leq \frac{\tau_{L} - \tau_{0} + {\left( {{SF}_{USER} + 3} \right) \cdot {USF}} + 31}{{SF}_{USER} \cdot {USF}}}\overset{\bigwedge}{=}{i_{0}.}} & {{Equation}\quad(12)}         \end{matrix}$

Finally, the value used for g_(l) (and g_(q)) in Equations (6) and (7) shall be used as the complex amplitude of the l-th estimated multipath.

Evaluating Equations (8) and (9) follows directly from the above analysis for Equations (6) and (7). Thus, the following disrete-time formulations of the G-rake Equations (13) to (16) are established: $\begin{matrix} {{R_{ISI}\left( {j,k} \right)} = {\sum\limits_{i = {- i_{0}}}^{i_{0}}{\sum\limits_{m = {1 - {SF}_{USER}}}^{{SF}_{USER} - 1}{\left\lbrack {1 - {\delta(i)}} \right\rbrack{\left( {{SF}_{USER} - {m}} \right) \cdot {\sum\limits_{l = 0}^{L - 1}{\sum\limits_{q = 0}^{L - 1}{{\hat{g}}_{l}{{\hat{g}}_{q}^{*} \cdot {R_{p}\left( {d_{j} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}} - {\hat{\tau}}_{1}} \right)} \cdot {R_{p}^{*}\left( {d_{k} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}} - {\hat{\tau}}_{q}} \right)}}}}}}}}}} & {{Equation}\quad(13)} \\ {{R_{MUI}\left( {j,k} \right)} = {\sum\limits_{i = {- i_{0}}}^{i_{0}}{\sum\limits_{m = {1 - {SF}_{USER}}}^{{SF}_{USER} - 1}{\left\lbrack {1 - {{\delta(m)}{\delta(i)}}} \right\rbrack{\left( {{SF}_{USER} - {m}} \right) \cdot {\sum\limits_{l = 0}^{L - 1}{\sum\limits_{q = 0}^{L - 1}{{\hat{g}}_{l}{{\hat{g}}_{q}^{*} \cdot {R_{p}\left( {d_{j} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}} - {\hat{\tau}}_{1}} \right)} \cdot {R_{p}^{*}\left( {d_{k} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}} - {\hat{\tau}}_{q}} \right)}}}}}}}}}} & {{Equation}\quad(14)} \\ {{R_{n}\left( {j,k} \right)} = {R_{p}\left( {d_{j} - d_{k}} \right)}} & {{Equation}\quad(15)} \\ {{y_{d}(j)} = {\sum\limits_{l = 0}^{L - 1}{{\hat{g}}_{l}{R_{p}\left( {d_{j} - {\hat{\tau}}_{l}} \right)}}}} & {{Equation}\quad(16)} \end{matrix}$

As a further refinement, complexity reduction may be achieved by neglecting R_(ISI). In many cases, the R_(MUI) dominates over R_(ISI), and R_(ISI) only has a marginal effect on the G-rake weights.

Hardware implementation of equations (13)-(16) with minimum runtime complexity may be simplified using lookup table (LUT). For example, equation (13) is rearranged as follows: ${R_{ISI}\left( {j,k} \right)} = {\sum\limits_{l = 0}^{L - 1}{\sum\limits_{q = 0}^{L - 1}{{\hat{g}}_{l}{\hat{g}}_{q}^{*}{\sum\limits_{i = {- i_{0}}}^{i_{0}}{\sum\limits_{m = {1 - {SF}_{USER}}}^{{SF}_{USER} - 1}{\left\lbrack {1 - {\delta(i)}} \right\rbrack\left( {{SF}_{USER} - {m}} \right){{R_{p}\left( {d_{j} - {\hat{\tau}}_{l} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}}} \right)} \cdot \underset{\underset{= {f{({{d_{j} - {\hat{\tau}}_{l}},{d_{k} - {\hat{\tau}}_{q}}})}}}{︸}}{R_{p}^{*}\left( {d_{k} - {\hat{\tau}}_{q} + {m \cdot {USF}} - {i \cdot {USF} \cdot {SF}_{USER}}} \right)}}}}}}}}$

The double sum underlined by a brace is a function of only two runtime parameters, i.e., parameters that are determined at transmission time and that are unknown at implementation time. These parameters, p₁ and p₂, are respectively p₁=d_(j)−τ₁ and p₂=d_(k)−τ_(q). Therefore, the entire expression underlined by the brace can be implemented on hardware as a two-dimensional LUT as follows: $\begin{matrix} {{R_{ISI}\left( {j,k} \right)} = {\sum\limits_{l = 0}^{L - 1}{\sum\limits_{q = 0}^{L - 1}{{\hat{g}}_{l}{{\hat{g}}_{q}^{*} \cdot {{LUT}_{ISI}\left( {{d_{j} - {\hat{\tau}}_{l}},{d_{k} - {\hat{\tau}}_{q}}} \right)}}}}}} & {{Equation}\quad(6)} \end{matrix}$

For typical values of d_(j) and τ₁ in 3G applications, the size of this LUT may be on the order of ½×5USF×5USF, which exploits the symmetry of the autocorrelation sequence R_(p)(n) and the fact that it is significantly non-zero only in the proximity of n=0. The LUT may be further shrunk to smaller sizes.

For computing the elements R_(MUI)(i,k), R_(n)(j,k) and y_(d)(j), an identical LUT-approach may be utilized. In the former case, LUT_(MUI)(p₁,p₂) is, in fact, very similar to LUT_(MUI)(p₁,p₂). The case of R_(n)(i,k) and y_(d)(j) is even simpler since they can share a one-dimensional LUT for the autocorrelation sequence R_(p)(n).

Determining E₀, E_(I) and N₀.

As an example, the present invention describes a proper format of the energy terms in a CDMA2000 or W-CDMA context and then a potential way to estimate them within that context is described. Even though the following description specifically mentions W-CDMA high speed downlink packet access (HSDPA), it should be known to those skilled in the art that the present invention can be applied to any other wireless communication systems.

E₀, E_(I) and N₀ in the context of HSDPA.

E₀ is the energy per symbol period of the desired user, E_(I) is the total energy per symbol period of the remaining users in the cell, (i.e. users 1 to K−1, where K is the total number of users served by the base station's downlink), and N₀ is the other-cell interference and AWGN energy per symbol period.

In HSDPA, the concept of user corresponds to one single code of the desired user, who has been assigned a number Nc of codes for a high-speed downlink transmission. Additionally, other non-user sources of in-cell interference energy present in the HSDPA downlink, (and in W-CDMA in general), such as the CPICH, must be considered as well in the calculation of E_(I). Finally, the concept of symbol period should be noted, since in W-CDMA the spreading factor varies from user to user.

In light of the above considerations, the CPICH and the other in-cell user's interference share a total power of one. The following Equations (18)-(20) are derived for computing E₀, E_(I) and N₀: $\begin{matrix} {{E_{0} = {\left( \frac{E_{c}}{I_{or}} \right)_{USER} \times \frac{1}{N_{c}}}};} & {{Equation}\quad(18)} \\ {{E_{I} = {\underset{\underset{{Self} - {{interference}\quad{of}\quad{{USER}'}s\quad{other}\quad{codes}}}{︸}}{\left( \frac{E_{c}}{I_{or}} \right)_{USER} \times \frac{N_{c} - 1}{N_{c}}} + \underset{\underset{{{CPICH}\quad{interference}}\quad}{︸}}{\left( \frac{E_{c}}{I_{or}} \right)_{CPICH}} + \underset{\underset{{{Other}\quad{in}} - {{cell}\quad{{user}'}s\quad{interference}}}{︸}}{\left\lfloor {1 - \left( \frac{E_{c}}{I_{or}} \right)_{USER} - \left( \frac{E_{c}}{I_{or}} \right)_{CPICH}} \right\rfloor}}};} & {{Equation}\quad(19)} \\ {{N_{0} = \frac{{SF}_{USER}}{\frac{I_{or}}{I_{oc}}}};} & {{Equation}\quad(20)} \end{matrix}$ wherein Ior, Ioc and Nc represent a total received power, a total interference power, and the number of codes assigned to the user, respectively.

An alternative formulation of Equation (4) which is independent of E_(I) and equivalent to Equation (4), (except for a scaling factor), is provided as follows: $\begin{matrix} {{R_{u} = {R_{ISI} + {\frac{E_{T} - E_{0}}{E_{0}}R_{MUI}} + {\frac{N_{0}}{E_{0}}R_{n}}}};} & {{Equation}\quad(21)} \end{matrix}$ where E_(T) is the total base station power.

For estimating E₀, the following approach is taken by the present invention. HSDPA provides a high speed downlink shared channel (HS-DSCH) transport channel. At the physical layer, the HS-DSCH is mapped to a high speed physical downlink shared channel (HS-PDSCH) and is also associated with one downlink dedicated physical channel (DPCH). The DPCH must in fact be active for the desired user as a prerequisite for a HSDPA service. The DPCH contains a subchannel for control purposes, known as a dedicated physical control channel (DPCCH). The DPCCH includes physical layer control information including known pilot bits and feedback commands for closed loop power control, (in both the uplink and downlink), among others. The pilot bits are a predefined sequence that can be used at the receiver for channel and/or power estimation. The estimate of E₀ may be obtained from the pilot symbols included in the DPCCH.

E_(T) can be estimated approximately from the CPICH signal by considering that its power is typically on the order of 10% of the total base station's transmitted power. This proportion varies as the base station serves more or less users. In accordance with a sensitivity analysis of bit error rate (BER) vs. E_(T) estimation error, for positive Ior/Ioc, it is better to overestimate E_(T) and for negative Ior/Ioc, it is better to underestimate E_(T). Approximating E_(T) as 5 to 10 times the CPICH power results in nearly optimal performance. Severely underestimating E_(T) or approximating it by E_(T)≈0 causes the G-rake to converge into the conventional rake's performance, since R_(u)→I.

Further refinement of the estimate may be obtained from the knowledge that as the WTRU approaches cell edge, the interference conditions force the WTRU to enter into a soft-handoff. This is a leading indicator of negative Ior/Ioc conditions and aids in establishing a more accurate estimate of E_(T). For example, the estimate of the pilot energy from each cell, (CPICH or the pilot signal in the DPCCH), can be used to gain an estimate of the base station energy from each cell and estimate the fraction of the incoming energy attributable to the HSDPA serving cell when in soft-handoff.

The matrix inversion of Equation (3) can be attained by numerical methods such as Choleski factorization or Gauss-Seidel iterations. The advantage of using Gauss-Seidel iterations is that computational load can be traded off for performance. Close to ideal G-rake performance is realized with only 3 iterations.

The multipath delay estimates can typically be assumed static throughout the duration of one FDD frame, while the multipath amplitude estimates typically need to be updated time slot by time slot. This fact can be exploited for reducing the computational load of updating the combining weights, (and the channel estimates), on every time slot. The estimate of the Doppler spread or speed of the WTRU can be used to further vary the update frequency of the weights based upon the Doppler spread. The lower the Doppler effect, the lower the update frequency for the weights and channel estimates.

FIG. 2 is a flow diagram of a process 200 for implementing a generalized rake receiver in accordance with the present invention. A plurality of finger correlators and escort correlators are provided in a receiver (step 202). The receiver receives signals from a transmitter (step 204). The received signals are demodulated with the finger correlators and the escort correlators (step 206). The finger correlators process the received signals in a location corresponding to each of a plurality of the strongest multipath components of the transmitted signal, and the escort correlators process the received signal in a location deviated from the location of the corresponding finger correlator. Each finger correlator and escort correlator generates an output per symbol period. A weight vector is generated for weighting the outputs from the finger correlators and the escort correlators (step 208). The weighted outputs are combined for symbol detection (step 210).

Although the features and elements of the present invention are described in the preferred embodiments in particular combinations, each feature or element can be used alone without the other features and elements of the preferred embodiments or in various combinations with or without other features and elements of the present invention. 

1. A rake receiver for a code division multiple access (CDMA) communication system, the rake receiver comprising: a plurality of finger correlators, each finger correlator demodulating a transmitted signal in a location corresponding each of a plurality of strongest multipath components of the transmitted signal; and a plurality of escort correlators, each escort correlator demodulating a transmitted signal in a location within a predetermined distance from the location of a corresponding finger correlator, whereby the escort correlators are utilized for multipath tracking and weight vector estimation.
 2. The rake receiver of claim 1 wherein each escort correlator is associated with a corresponding finger correlator.
 3. The rake receiver of claim 2 wherein the escort correlator is located ½ chip apart from the location of the corresponding finger correlator.
 4. The rake receiver of claim 3 wherein the escort correlator is located in either side of the corresponding finger correlator.
 5. The rake receiver of claim 1 wherein the weight vector w is estimated by the following equation: w=R_(u) ⁻¹h, wherein R_(u) and h are given by: R_(u)=E₀R_(ISI)+E₁R_(MUI)+N₀R_(n) and h=√{square root over (E₀)}y_(d), R_(u) is a total noise covariance, and R_(ISI), R_(MUI) and R_(n) represent autocorrelation of inter-symbol interference component, multiuser interference component and noise component, respectively, and E₀, E_(T) and N₀ represents energy per symbol period of a desired user, total energy per symbol period of the remaining users in the cell, and other-cell interference and additive white Gaussian noise, respectively.
 6. The rake receiver of claim 5 wherein the system includes a plurality of base stations and the weight vector is estimated utilizing a total base station energy.
 7. The rake receiver of claim 6 wherein the total base station energy is estimated based on a received pilot sequence.
 8. The rake receiver of claim 7 wherein the total base station energy is approximated from a received common pilot channel (CPICH).
 9. The rake receiver of claim 8 wherein the total base station power is overestimated when the Ior/Ioc is positive.
 10. The rake receiver of claim 9 wherein the total base station power is estimated as five (5) to ten (10) times the CPICH power.
 11. The rake receiver of claim 8 wherein the total base station power is underestimated when the Ior/Ioc is negative.
 12. The rake receiver of claim 5 wherein the weight vector is calculated disregarding inter-symbol interference.
 13. The rake receiver of claim 5 wherein inversion of the matrix R is performed by Choleski factorization.
 14. The rake receiver of claim 5 wherein inversion of the matrix R is performed by Gauss-Seidel iterations.
 15. The rake receiver of claim 5 wherein energy per symbol period of the desired user is estimated using a pilot sequence transmitted by a base station.
 16. The rake receiver of claim 15 wherein the pilot sequence is transmitted via a dedicated physical control channel (DPCCH).
 17. The rake receiver of claim 5 wherein update of the weight vector is varied depending on estimate of Doppler spread and speed of the user.
 18. The rake receiver of claim 5 wherein multipath delay estimates are assumed to be static throughout the duration of one frame and the multipath amplitude estimates are updated time slot by time slot.
 19. The rake receiver of claim 5 wherein a lookup table is utilized in obtaining R_(ISI), R_(MUI) and R_(n).
 20. A method for combining multipath components in a rake receiver in a code division multiple access (CDMA) communication system, the method comprising: providing a plurality of finger correlators and associated escort correlators, receiving a signal comprising a plurality of symbols; demodulating the received signal with the finger correlators in a location corresponding each of a plurality of strongest multipath components of the received signal to generate a finger correlator output; demodulating the received signal with the escort correlators in a location within a predetermined distance from the location of a corresponding finger correlator to generate an escort correlator output; generating a weight vector for the outputs from the finger correlators and the escort correlators; and combining the weighted outputs for symbol detection.
 21. The method of claim 20 wherein the escort correlator is located ½ chip apart from the location of the corresponding finger correlator.
 22. The method of claim 21 wherein the escort correlator is located in either side of the corresponding finger correlator.
 23. The method of claim 20 wherein the weight vector w is estimated by the following equation: w=R_(u) ⁻¹h, wherein R_(u) and h are given by: R_(u)=E₀R_(ISI)+E_(I)R_(MUI)+N₀R_(n) and h=√{square root over (E₀)}y_(d), R_(u) is a total noise covariance, and R_(ISI), R_(MUI) and R_(n) represent autocorrelation of inter-symbol interference component, multiuser interference component and noise component, respectively, and E₀, E_(T) and N₀ represents energy per symbol period of a desired user, total energy per symbol period of the remaining users in the cell, and other-cell interference and additive white Gaussian noise, respectively.
 24. The method of claim 23 wherein the system includes a plurality of base stations and the weight vector is estimated utilizing a total base station energy.
 25. The method of claim 24 wherein the total base station energy is estimated based on a received pilot sequence.
 26. The method of claim 25 wherein the total base station energy is approximated from a received common pilot channel (CPICH).
 27. The method of claim 26 wherein the total base station power is overestimated when the Ior/Ioc is positive.
 28. The method of claim 27 wherein the total base station power is estimated as five (5) to ten (10) times the CPICH power.
 29. The method of claim 26 wherein the total base station power is underestimated when the Ior/Ioc is negative.
 30. The method of claim 23 wherein the weight vector is calculated disregarding inter-symbol interference.
 31. The method of claim 23 wherein inversion of the matrix R is performed by Choleski factorization.
 32. The method of claim 23 wherein inversion of the matrix R is performed by Gauss-Seidel iterations.
 33. The method of claim 23 wherein energy per symbol period of the desired user is estimated using a pilot sequence transmitted by a base station.
 34. The method of claim 33 wherein the pilot sequence is transmitted via a dedicated physical control channel (DPCCH).
 35. The method of claim 23 wherein update of the weight vector is varied depending on estimate of Doppler spread and speed of the user.
 36. The method of claim 23 wherein multipath delay estimates are assumed to be static throughout the duration of one frame and the multipath amplitude estimates are updated time slot by time slot.
 37. The method of claim 23 wherein a lookup table is utilized in obtaining R_(ISI), R_(MUI) and R_(n). 